论文标题
FastAtDC:快速异常的轨迹检测和分类
FastATDC: Fast Anomalous Trajectory Detection and Classification
论文作者
论文摘要
在智能运输系统中应用大量应用是对异常轨迹的自动检测是一个重要的问题。许多现有的研究集中在区分异常轨迹和正常轨迹上,忽略了异常轨迹之间的巨大差异。最近的一项研究在识别异常轨迹模式方面取得了长足进步,并提出了一种两级算法,用于异常轨迹检测和分类(ATDC)。该算法具有出色的性能,但受到了一些局限性,例如高时间的复杂性和不良的解释。在这里,我们对ATDC算法进行了仔细的理论和经验分析,表明可以简化两个阶段中异常得分的计算,并且该算法的第二阶段比第一阶段更为重要。因此,我们开发了一种FastATDC算法,该算法在两个阶段都引入了随机抽样策略。实验结果表明,FastAtDC在实际数据集上的速度比ATDC快10到20倍。此外,FastAtDC优于基线算法,与ATDC算法相当。
Automated detection of anomalous trajectories is an important problem with considerable applications in intelligent transportation systems. Many existing studies have focused on distinguishing anomalous trajectories from normal trajectories, ignoring the large differences between anomalous trajectories. A recent study has made great progress in identifying abnormal trajectory patterns and proposed a two-stage algorithm for anomalous trajectory detection and classification (ATDC). This algorithm has excellent performance but suffers from a few limitations, such as high time complexity and poor interpretation. Here, we present a careful theoretical and empirical analysis of the ATDC algorithm, showing that the calculation of anomaly scores in both stages can be simplified, and that the second stage of the algorithm is much more important than the first stage. Hence, we develop a FastATDC algorithm that introduces a random sampling strategy in both stages. Experimental results show that FastATDC is 10 to 20 times faster than ATDC on real datasets. Moreover, FastATDC outperforms the baseline algorithms and is comparable to the ATDC algorithm.